Title of article :
Optimal Strategy for Sit-to-Stand Movement Using Reinforcement Learning
Author/Authors :
Jamali, Saeed Department of Computer Engineering - Central Tehran Branch - Islamic Azad University, Tehran , Taghvaei, Sajjad School of Mechanical Engineering, Shiraz University , Haghpanah, Arash School of Mechanical Engineering, Shiraz University
Abstract :
Background: Sit-to-stand motion is a frequent and challenging task in daily life
activities especially for elderly and disabled people. Central nervous system uses
several strategies for sit-to-stand movement. Many studies have been conducted
to understand the underlying basis of the optimal approach. Reinforcement
learning (RL) is a suitable method for modeling the control strategies that occur
in neuro-musculoskeletal system.
Methods: In this paper a dynamic model of human sit-to-stand was derived, and
kinematic data of a healthy subject has been extracted in this task. An optimal
control problem was formulated considering minimum energy and Q-Learning
method has been utilized to find the optimal joint moments during sit to stand
movement.
Results: The simulation results have been compared to the experimental data.
The lower extremity joint angles have been simulated and tracked the actual
human angles extracted from the experiments. Also the joints moments showed
a satisfactory precision by the proposed approach.
Conclusion: An RL-based algorithm was used to model the human sit-to-stand,
in which the model explores the state space with a Markov based approach and
finds the best actions (joint moments) at each state (posture). In this approach the
model successfully performs the task while consuming minimum energy. This
was achieved by updating the algorithm in every trial using a Q-learning method
Keywords :
Sit-to-stand , Optimal control , Reinforcement learning , Human dynamic model
Journal title :
Astroparticle Physics